2024
DOI: 10.1111/aor.14845
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Physiological control for left ventricular assist devices based on deep reinforcement learning

Diego Fernández‐Zapico,
Thijs Peirelinck,
Geert Deconinck
et al.

Abstract: BackgroundThe improvement of controllers of left ventricular assist device (LVAD) technology supporting heart failure (HF) patients has enormous impact, given the high prevalence and mortality of HF in the population. The use of reinforcement learning for control applications in LVAD remains minimally explored. This work introduces a preload‐based deep reinforcement learning control for LVAD based on the proximal policy optimization algorithm.MethodsThe deep reinforcement learning control is built upon data de… Show more

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